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Architecting enterprise AI applicati...
~
Ahmed, Ahmed Ceifelnasr.
Architecting enterprise AI applicationsa guide to designing reliable, scalable, and secure enterprise-grade AI solutions /
Record Type:
Electronic resources : Monograph/item
Title/Author:
Architecting enterprise AI applicationsby Anton Cagle, Ahmed Mohamed Ceifelnasr Ahmed.
Reminder of title:
a guide to designing reliable, scalable, and secure enterprise-grade AI solutions /
Author:
Cagle, Anton.
other author:
Ahmed, Ahmed Ceifelnasr.
Published:
Berkeley, CA :Apress :2024.
Description:
xxiii, 286 p. :ill., digital ;24 cm.
Contained By:
Springer Nature eBook
Subject:
Artificial intelligence.
Online resource:
https://doi.org/10.1007/979-8-8688-0902-6
ISBN:
9798868809026$q(electronic bk.)
Architecting enterprise AI applicationsa guide to designing reliable, scalable, and secure enterprise-grade AI solutions /
Cagle, Anton.
Architecting enterprise AI applications
a guide to designing reliable, scalable, and secure enterprise-grade AI solutions /[electronic resource] :by Anton Cagle, Ahmed Mohamed Ceifelnasr Ahmed. - Berkeley, CA :Apress :2024. - xxiii, 286 p. :ill., digital ;24 cm.
Part 1: Defining Your AI Application -- Chapter 1: Human Flexibility and AI Specialization -- Chapter 2: Meta Systems -- Chapter 3: Prediction Machines -- Part 2: Designing Your AI Application -- Chapter 4: Anatomy of an AI Application -- Chapter 5: Data, Machine Learning, and Reasoners -- Chapter 6: Large Language Models (LLMs) -- Chapter 7: AI Agents -- Part 3: Maintaining Your AI Application -- Chapter 8: Testing Your Enterprise AI Application -- Chapter 9: Testing automation for enterprise ai applications -- Chapter 10: Security -- Chapter 11: Information Curation -- Part 4: AI Enabled Teams -- Chapter 12: Remote Work and Reskilling -- Chapter 13: Expert Personas -- Chapter 14: The Role of the AI Handler -- Chapter 15: Legal and Ethical Considerations.
This book explores how to define, design, and maintain enterprise AI applications, exploring the impacts they will have on the teams who work with them. The book is structured into four parts. In Part 1: Defining Your AI Application, you are introduced to the dynamic interplay between human adaptability and AI specialization, the concept of meta systems, and the mechanics of prediction machines. In Part 2: Designing Your AI Application, the book delves into the anatomy of an AI application, unraveling the intricate relationships among data, machine learning, and reasoners. This section introduces the building blocks and enterprise architectural framework for designing multi-agent systems. Part 3: Maintaining Your AI Application takes a closer look at the ongoing life cycle of AI systems. You are guided through the crucial aspects of testing and test automation, providing a solid foundation for effective development practices. This section covers the critical tasks of security and information curation that ensure the long-term success of enterprise AI applications. The concluding section, Part 4: AI Enabled Teams, navigates the evolving landscape of collaborative efforts between humans and AI. It explores the impact of AI on remote work dynamics and introduces the new roles of the expert persona and the AI handler. This section concludes with a deep dive into the legal and ethical dimensions that AI-enabled teams must navigate. This book is a comprehensive guide that not only equips developers, architects, and product owners with the technical know-how of AI application development, but also delves into the broader implications for teams and society. What You Will Learn Understand the algorithms and processes that enable AI to make accurate predictions and enhance decision making Grasp the concept of metasystems and their role in the design phase of AI applications Know how data, machine learning, and reasoners drive the functionality and decision-making capabilities of AI applications Know the architectural components necessary for scalable and maintainable multi-agent AI applications Understand methodologies for testing AI applications, ensuring their robustness, accuracy, and reliability in real-world applications Understand the evolving dynamics of human-AI coordination facing teams in the new enterprise working environment.
ISBN: 9798868809026$q(electronic bk.)
Standard No.: 10.1007/979-8-8688-0902-6doiSubjects--Topical Terms:
194058
Artificial intelligence.
LC Class. No.: Q335
Dewey Class. No.: 006.3
Architecting enterprise AI applicationsa guide to designing reliable, scalable, and secure enterprise-grade AI solutions /
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Part 1: Defining Your AI Application -- Chapter 1: Human Flexibility and AI Specialization -- Chapter 2: Meta Systems -- Chapter 3: Prediction Machines -- Part 2: Designing Your AI Application -- Chapter 4: Anatomy of an AI Application -- Chapter 5: Data, Machine Learning, and Reasoners -- Chapter 6: Large Language Models (LLMs) -- Chapter 7: AI Agents -- Part 3: Maintaining Your AI Application -- Chapter 8: Testing Your Enterprise AI Application -- Chapter 9: Testing automation for enterprise ai applications -- Chapter 10: Security -- Chapter 11: Information Curation -- Part 4: AI Enabled Teams -- Chapter 12: Remote Work and Reskilling -- Chapter 13: Expert Personas -- Chapter 14: The Role of the AI Handler -- Chapter 15: Legal and Ethical Considerations.
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This book explores how to define, design, and maintain enterprise AI applications, exploring the impacts they will have on the teams who work with them. The book is structured into four parts. In Part 1: Defining Your AI Application, you are introduced to the dynamic interplay between human adaptability and AI specialization, the concept of meta systems, and the mechanics of prediction machines. In Part 2: Designing Your AI Application, the book delves into the anatomy of an AI application, unraveling the intricate relationships among data, machine learning, and reasoners. This section introduces the building blocks and enterprise architectural framework for designing multi-agent systems. Part 3: Maintaining Your AI Application takes a closer look at the ongoing life cycle of AI systems. You are guided through the crucial aspects of testing and test automation, providing a solid foundation for effective development practices. This section covers the critical tasks of security and information curation that ensure the long-term success of enterprise AI applications. The concluding section, Part 4: AI Enabled Teams, navigates the evolving landscape of collaborative efforts between humans and AI. It explores the impact of AI on remote work dynamics and introduces the new roles of the expert persona and the AI handler. This section concludes with a deep dive into the legal and ethical dimensions that AI-enabled teams must navigate. This book is a comprehensive guide that not only equips developers, architects, and product owners with the technical know-how of AI application development, but also delves into the broader implications for teams and society. What You Will Learn Understand the algorithms and processes that enable AI to make accurate predictions and enhance decision making Grasp the concept of metasystems and their role in the design phase of AI applications Know how data, machine learning, and reasoners drive the functionality and decision-making capabilities of AI applications Know the architectural components necessary for scalable and maintainable multi-agent AI applications Understand methodologies for testing AI applications, ensuring their robustness, accuracy, and reliability in real-world applications Understand the evolving dynamics of human-AI coordination facing teams in the new enterprise working environment.
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Professional and Applied Computing (SpringerNature-12059)
based on 0 review(s)
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